Asrul's Blog

My Research

During 2 years started on July 2009,  my research focus on a system development areas in classification or prediction of data. Computational Intelligent (CI) as a tools for my research like in Artificial Intelligent (AI) fields and Optimization techniques (GA, PSO,  ACO) to solve multi discipline problems (engineering,  medical,  computer security,  control system,  robotics).

Objective of  My Research:

Develop a classifier of Artificial Neural Network (ANN) for large and imbalanced data set in order to achieve better prediction performance.

Scope of Work and Methodology:

This study focus on design a system for classification to predict a large and imbalanced data set based on Artificial Neural Network (ANN).  Single layer feed forward neural network is chosen. The significance of study is to provide a concept of solving a large scale and imbalanced data using ANN classifier algorithm in advance artificial intelligent and intelligent optimization algorithm fields like Particle Swarm Optimization (PSO). The scope of study is deals with a learning concept for a large and imbalanced data problem to improve the prediction performance. Research methodology consists, explore and study in advance artificial intelligent, intelligent optimization algorithm and classifier algorithm that can solve the problem. At the end of this study the suitable algorithm from Artificial Intelligent (AI) is chosen and implement to the problem. Develop a tool and software. Finally, the analysis will be conduct to find the prediction performance of algorithm and compare to other benchmark data set.

Expected Result/s:

At the end of this research, the model and algorithm for the large and imbalanced data set problem will be successful developed based on ANN.


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